5

I have a DataFrame that contains a list on each column as shown in the example below with only two columns.

    Gamma   Beta
0   [1.4652917656926299, 0.9326935235505321, float] [91, 48.611034768515864, int]
1   [2.6008354611105995, 0.7608529935313189, float] [59, 42.38646954167245, int]
2   [2.6386970166722348, 0.9785848171888037, float] [89, 37.9011122659478, int]
3   [3.49336632573625, 1.0411524946972244, float]   [115, 36.211134224288344, int]
4   [2.193991200007534, 0.7955134305428825, float]  [128, 50.03563864975485, int]
5   [3.4574527664490997, 0.9399880977511021, float] [120, 41.841146628802875, int]
6   [3.1190582380554863, 1.0839109431114795, float] [148, 55.990072419824514, int]
7   [2.7757359940789916, 0.8889801332053203, float] [142, 51.08885697101243, int]
8   [3.23820908493237, 1.0587479742892683, float]   [183, 43.831293356668425, int]
9   [2.2509032790941985, 0.8896196407231622, float] [66, 35.9377662201882, int]

I'd like to extract for every column the first position of the list on each row to get a DataFrame looking as follows.

    Gamma   Beta
0   1.4652917656926299  91
1   2.6008354611105995  59
2   2.6386970166722348  89
...

Up to now, my solution would be like [row[1][0] for row in df_params.itertuples()], which I could iterate for every column index of the row and then compose my new DataFrame.

An alternative is new_df = df_params['Gamma'].apply(lambda x: x[0]) and then to iterate to go through all the columns.

My question is, is there a less cumbersome way to perform this operation?

12

You can use the str accessor for lists, e.g.:

df_params['Gamma'].str[0]

This should work for all columns:

df_params.apply(lambda col: col.str[0])
  • 1
    str[0] is nice shot ;) – jezrael Aug 31 '17 at 13:56
  • I learnt it here, from you or EdChum I don't remember ;) – IanS Aug 31 '17 at 13:57
  • 1
    I learnt this from DSM ;) – jezrael Aug 31 '17 at 13:57
  • 1
    And I learned it from jezrael... – Scott Boston Aug 31 '17 at 13:57
  • Oh wow that's pretty nice. Goodbye list comprehension. Definitely getting my vote. – A.Kot Aug 31 '17 at 13:58
3

Itertuples would be pretty slow. You could speed this up with the following:

for column_name in df_params.columns:
    df_params[column_name] = [i[0] for i in df_params[column_name]]

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.